Refine
Year of publication
Document type
- Article (peer-reviewed) (26) (remove)
Is part of the Bibliography
- Yes (26)
Keywords
- Industry 4.0 (4)
- Machine learning (4)
- Blockchain (3)
- Cloud computing (3)
- Predictive maintenance (3)
- Security (3)
- Agents (2)
- Chronicle mining (2)
- Deep learning (2)
- IoT (2)
- Knowledge-based system (2)
- Manufacturing process (2)
- Resource discovery (2)
- Address distribution (1)
- Assessment (1)
- Audit (1)
- Authentication (1)
- Authentication technologies (1)
- Authorization (1)
- Availability (1)
- Biometrics (1)
- Cloud audit (1)
- Cloud audits (1)
- Cloud forensic challenges (1)
- Cloud forensic solutions (1)
- Cloud security (1)
- Condition monitoring (1)
- Continuous authentication (1)
- Cooperative intelligent transportation systems (C-ITS) (1)
- Cross authentication (1)
- Cybersecurity (1)
- DHT (1)
- Decentralized architecture (1)
- Digital agriculture (1)
- Digital forensics (1)
- Digital health (1)
- Discriminative convolutional neural network (1)
- Distributed ledger (1)
- Dynamic VM creation (1)
- Experience capitalization (1)
- Fault prognostics (1)
- Forensic acquisition (1)
- Forensic analysis (1)
- Industrial blockchain (1)
- Internet der Dinge (1)
- Legacy machines (1)
- MLOps Mlflow DVC (1)
- MUWS (1)
- Maintenance (1)
- Metrics (1)
- NAT traversal (1)
- Ontology (1)
- Ontology reasoning (1)
- P2P (1)
- PaaS (1)
- QoS (1)
- Quality assurance (1)
- Rule base refinement (1)
- SOA (1)
- Security policies (1)
- Self adaptive algorithm (1)
- Semantic technology (1)
- Semantics (1)
- Shear wave elastography (1)
- Shibboleth (1)
- Shop floor (1)
- Sicherheit (1)
- Smart farming (1)
- Transparent authentication (1)
- Trust (1)
- Trust management (1)
- Ultrasound (1)
- Usability (1)
- User authentication (1)
- Verifiability (1)
- WSDM (1)
- Web Service Ping (1)
- Web Services (1)
- XAI (1)
- e-Learning (1)
- eHealth/mHealth (1)
Smart Condition Monitoring for Industry 4.0 Manufacturing Processes: An Ontology-Based Approach
(2019)
Combining Chronicle Mining and Semantics for Predictive Maintenance in Manufacturing Processes
(2020)
In the context of Industry 4.0, smart factories use advanced sensing and data analytic technologies to understand and monitor the manufacturing processes. To enhance production efficiency and reliability, statistical Artificial Intelligence (AI) technologies such as machine learning and data mining are used to detect and predict potential anomalies within manufacturing processes. However, due to the heterogeneous nature of industrial data, sometimes the knowledge extracted from industrial data is presented in a complex structure. This brings the semantic gap issue which stands for the lack of interoperability among different manufacturing systems. Furthermore, as the Cyber-Physical Systems (CPS) are becoming more knowledge-intensive, uniform knowledge representation of physical resources and real-time reasoning capabilities for analytic tasks are needed to automate the decision-making processes for these systems. These requirements highlight the potential of using symbolic AI for predictive maintenance.
To automate and facilitate predictive analytics in Industry 4.0, in this paper, we present a novel Knowledge-based System for Predictive Maintenance in Industry 4.0 (KSPMI). KSPMI is developed based on a novel hybrid approach that leverages both statistical and symbolic AI technologies. The hybrid approach involves using statistical AI technologies such as machine learning and chronicle mining (a special type of sequential pattern mining approach) to extract machine degradation models from industrial data. On the other hand, symbolic AI technologies, especially domain ontologies and logic rules, will use the extracted chronicle patterns to query and reason on system input data with rich domain and contextual knowledge. This hybrid approach uses Semantic Web Rule Language (SWRL) rules generated from chronicle patterns together with domain ontologies to perform ontology reasoning, which enables the automatic detection of machinery anomalies and the prediction of future events’ occurrence. KSPMI is evaluated and tested on both real-world and synthetic data sets.